Difference between revisions of "MSCA Individual Research Projects"

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*'''Pillar 1:''' Introduction to AI for financial applications (WWU, 4 ECTs), Work Package 2
 
*'''Pillar 1:''' Introduction to AI for financial applications (WWU, 4 ECTs), Work Package 2
  
*'''Work Packages Included:''' 2, 6, 7, 8  
+
*'''Work Packages Included:''' [[WP2 AI for financial markets]], 6, 7, 8  
  
 
== Objectives ==  
 
== Objectives ==  

Revision as of 12:51, 18 September 2023

Strengthening European financial service providers through applicable reinforcement learning

  • Host institution: University of Twente.
  • Starting month: M3.
  • Duration: 36 months.
  • Pillar 1: Introduction to AI for financial applications (WWU, 4 ECTs), Work Package 2

Objectives

Reinforcement Learning (RL) has become popular for automating uncertain decision-making in complex environments. Deep reinforcement learning can make impressive algorithmic decisions in closed environments, but real-world applications in open environments are harder. This project examines how RL can advance digital finance.

Expected Results

The project will address several RL implementation issues in digital finance. Utility-based RL deliverables will improve financial decision-making by developing multi-criteria analysis, extreme scenarios, and risk management methods. RL in decision-support will be optimised for explainability, regulatory compliance, model abstractions, and human judgement. We will also examine technological challenges like Digital Twin environments, machine learning pipelines, and digital finance ecosystem integration.

Planned Secondments

  • CAR, Altin Kadareja (CEO), M6, 18 months, applied research on Fintech innovations with Deep learning
  • ECB, Lukasz Kubicki, M27, 4 months, training on EU principles, supervision policies and research

Modelling green credit scores for a network of retail and business clients

  • Host institution: University of Twente.
  • Starting month: M6.
  • Duration: 36 months.
  • Pillar 1: Sustainable finance (UNA, 4 ECTs), Work Package 5
  • Work Packages Included: 5, 6, 7, 8

Objectives

Some markets use green credit scores to assess SME credit risk in sustainable and circular economies. Simultaneously, network customers' default likelihood has been studied. This study develops and deploys green credit score models that account for customers' networks. We show the impact and give financial institutions methods to improve credit risk assessment and access.

Expected Results

Green credit score models will be developed and implemented. These models inform SMEs about their carbon footprint, their main risks in a low-carbon economy, and how to mitigate them. SMEs leading on sustainability could gain easier access to capital by demonstrating positive relationships between creditworthiness and sustainability, creating a fairer credit risk assessment that explicitly factors in sustainability metrics and encouraging low-carbon measures.

Planned Secondments

  • SWE, Prof. Dr. Tadas Gudaitis, M12, 18 months, ESG and credit score modelling
  • ECB, Lukasz Kubicki, M33, 4 months, exposure to globally leading central bank, research training on EU principles, supervision

Industry standard for blockchain

A recommender system to re-orient investments towards more sustainable technologies

Fraud detection in financial networks

Collaborative learning across data silos

Risk index for cryptos

Detecting anomalies and dependence structures in high dimensional, high frequency financial data

Audience-dependent explanations

Experimenting with Green AI to reduce processing time and contributes to creating a low-carbon economy

Applications of Agent-based Models (ABM) to analyse finance growth in a sustainable manner over a long-term period

Developing industry-ready automated trading systems to conduct EcoFin analysis using deep learning algorithms

Predicting financial trends using text mining and NLP

Challenges and opportunities for the uptaking of technological development by industry

Deep Generation of Financial Time Series

Investigating the utility of classical XAI methods in financial time series

Fair Algorithmic Design and Portfolio Optimization under Sustainability Concerns